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Automated Adversary Emulation for Cyber-Physical Systems via Reinforcement Learning

机译:通过加固学习自动对网络实物系统进行对手仿真

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Adversary emulation is an offensive exercise that provides a comprehensive assessment of a system’s resilience against cyber attacks. However, adversary emulation is typically a manual process, making it costly and hard to deploy in cyber-physical systems (CPS) with complex dynamics, vulnerabilities, and operational uncertainties. In this paper, we develop an automated, domain-aware approach to adversary emulation for CPS. We formulate a Markov Decision Process (MDP) model to determine an optimal attack sequence over a hybrid attack graph with cyber (discrete) and physical (continuous) components and related physical dynamics. We apply model-based and model-free reinforcement learning (RL) methods to solve the discrete-continuous MDP in a tractable fashion. As a baseline, we also develop a greedy attack algorithm and compare it with the RL procedures. We summarize our findings through a numerical study on sensor deception attacks in buildings to compare the performance and solution quality of the proposed algorithms.
机译:对手仿真是一个进攻性运动,为系统恢复力的对抗网络攻击提供全面评估。然而,对手仿真通常是手动过程,使其昂贵且难以在网络 - 物理系统(CPS)中,具有复杂的动态,漏洞和操作不确定性。在本文中,我们开发了一种自动化的域名感知方法,以对CPS的反复仿真进行侵犯。我们制定了Markov决策过程(MDP)模型,以确定具有网络(离散)和物理(连续)组件的混合攻击图和相关物理动态的最佳攻击序列。我们应用基于模型和无模型加强学习(RL)方法,以以易行的方式解决离散连续的MDP。作为基线,我们还开发了贪婪的攻击算法,并将其与RL程序进行比较。我们通过对建筑物中的传感器欺骗攻击的数值研究总结了我们的研究结果来比较所提出的算法的性能和解决方案质量。

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